Deep Learning-Based Algorithmic Trading Based on News and Events Strategies

Kayathri, V. and Prabakaran, P. (2024) Deep Learning-Based Algorithmic Trading Based on News and Events Strategies. In: Lecture Notes in Networks and Systems. Springer, pp. 311-320.

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Abstract

Successful stock market investors should consider these trends. This article defines price effect, optimal execution, and placement through the lens of algorithmic trading and strategies based on news and events. By using feedbacks controlled to include consideration of a stop-loss order, algorithmic trading allows traders and investors at large to liquidate or construct big securities positions in a fully automated manner, thus generalising the existing stock trading results. Trading decisions made by the AI agent could affect the asset price. We see this as a marketplace where people are bartering and swapping goods. Creating a new market is the driving force behind our research into generative models. This news sentiment does a good job of describing stocks, and AI systems that read the news and quantify them react to factors that affect prices far more quickly than humans do. All three of the stock market's underpinnings—price, volume, and volatility—respond strongly to news events. Sentiment analysis is a method for gauging the overall tone of a news piece and classifying it as optimistic, pessimistic, or neutral. The simulation is conducted in python to test the effectiveness of the model in trading in an automated manner for stocks. The results show that the proposed sentimental analysis for stock trading achieves higher rate of accuracy and precision than the other methods.

Item Type: Book Section
Subjects: Computer Science Engineering > Deep Learning
Divisions: Computer Applications
Depositing User: Mr IR Admin
Date Deposited: 07 Oct 2024 09:54
Last Modified: 07 Oct 2024 09:54
URI: https://ir.vistas.ac.in/id/eprint/9335

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